Rendering realistic appearances of homogeneous translucent materials, such as milk and marble, poses challenges due to the complexity of subsurface scattering. In this paper, we present a neural method for real-time rendering of homogeneous translucent objects. Based on the observation that light propagation inside a highly scattered media is like a diffusion process (Stam 1995), we propose a neural data structure named diffusion block to mimic the behavior of the diffusion process. The diffusion block is built upon a recent network structure named DiffusionNet (Sharp et al. 2022) with a few modifications to adapt to our problem of translucent rendering. Our network is lightweight and efficient, leading to a real-time rendering method. Furthermore, our method supports dynamic material properties and diverse lighting conditions. Comparisons with state-of-the-art real-time translucent rendering methods demonstrate the superiority of our method in rendering quality.
Craig DonnerHenrik Wann Jensen
Keisuke MochidaMidori OkamotoHiroyuki KuboShigeo Morishima
Chih‐Wen ChangWen‐Chieh LinTan‐Chi HoTsung‐Shian HuangJung‐Hong Chuang